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Knowledge-inspired Subdomain Adaptation for Cross-Domain Knowledge Transfer

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arxiv 2308.09724 v1 pith:N4EKALKI submitted 2023-08-17 cs.LG cs.AI

Knowledge-inspired Subdomain Adaptation for Cross-Domain Knowledge Transfer

classification cs.LG cs.AI
keywords domainadaptationtransactionsalignmentcreditglobalkisaknowledge
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Most state-of-the-art deep domain adaptation techniques align source and target samples in a global fashion. That is, after alignment, each source sample is expected to become similar to any target sample. However, global alignment may not always be optimal or necessary in practice. For example, consider cross-domain fraud detection, where there are two types of transactions: credit and non-credit. Aligning credit and non-credit transactions separately may yield better performance than global alignment, as credit transactions are unlikely to exhibit patterns similar to non-credit transactions. To enable such fine-grained domain adaption, we propose a novel Knowledge-Inspired Subdomain Adaptation (KISA) framework. In particular, (1) We provide the theoretical insight that KISA minimizes the shared expected loss which is the premise for the success of domain adaptation methods. (2) We propose the knowledge-inspired subdomain division problem that plays a crucial role in fine-grained domain adaption. (3) We design a knowledge fusion network to exploit diverse domain knowledge. Extensive experiments demonstrate that KISA achieves remarkable results on fraud detection and traffic demand prediction tasks.

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